PODIA-3D: Domain Adaptation of 3D Generative Model Across Large Domain Gap Using Pose-Preserved Text-to-Image Diffusion
Gwanghyun Kim, Ji Ha Jang, Se Young Chun

TL;DR
PODIA-3D introduces a pose-preserved text-to-image diffusion pipeline that enables effective 3D generative model adaptation across large domain gaps, addressing shape-pose trade-offs, pose bias, and instance bias.
Contribution
The paper presents a novel pose-preserved diffusion model and debiasing techniques for improved 3D domain adaptation with significant domain gaps.
Findings
Outperforms existing methods in text-image correspondence
Generates more realistic and diverse 3D samples
Enhances depth perception in generated 3D shapes
Abstract
Recently, significant advancements have been made in 3D generative models, however training these models across diverse domains is challenging and requires an huge amount of training data and knowledge of pose distribution. Text-guided domain adaptation methods have allowed the generator to be adapted to the target domains using text prompts, thereby obviating the need for assembling numerous data. Recently, DATID-3D presents impressive quality of samples in text-guided domain, preserving diversity in text by leveraging text-to-image diffusion. However, adapting 3D generators to domains with significant domain gaps from the source domain still remains challenging due to issues in current text-to-image diffusion models as following: 1) shape-pose trade-off in diffusion-based translation, 2) pose bias, and 3) instance bias in the target domain, resulting in inferior 3D shapes, low…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning
MethodsDiffusion
